Dimitrijevic Aleksandra, Horn Renate
Institute of Field and Vegetable Crops, Novi Sad, Serbia.
Institut für Biowissenschaften, Abteilung Pflanzengenetik, Universität Rostock, Rostock, Germany.
Front Plant Sci. 2018 Jan 17;8:2238. doi: 10.3389/fpls.2017.02238. eCollection 2017.
In sunflower, molecular markers for simple traits as, e.g., fertility restoration, high oleic acid content, herbicide tolerance or resistances to , or have been successfully used in marker-assisted breeding programs for years. However, agronomically important complex quantitative traits like yield, heterosis, drought tolerance, oil content or selection for disease resistance, e.g., against have been challenging and will require genome-wide approaches. Plant genetic resources for sunflower are being collected and conserved worldwide that represent valuable resources to study complex traits. Sunflower association panels provide the basis for genome-wide association studies, overcoming disadvantages of biparental populations. Advances in technologies and the availability of the sunflower genome sequence made novel approaches on the whole genome level possible. Genotype-by-sequencing, and whole genome sequencing based on next generation sequencing technologies facilitated the production of large amounts of SNP markers for high density maps as well as SNP arrays and allowed genome-wide association studies and genomic selection in sunflower. Genome wide or candidate gene based association studies have been performed for traits like branching, flowering time, resistance to head and stalk rot. First steps in genomic selection with regard to hybrid performance and hybrid oil content have shown that genomic selection can successfully address complex quantitative traits in sunflower and will help to speed up sunflower breeding programs in the future. To make sunflower more competitive toward other oil crops higher levels of resistance against pathogens and better yield performance are required. In addition, optimizing plant architecture toward a more complex growth type for higher plant densities has the potential to considerably increase yields per hectare. Integrative approaches combining omic technologies (genomics, transcriptomics, proteomics, metabolomics and phenomics) using bioinformatic tools will facilitate the identification of target genes and markers for complex traits and will give a better insight into the mechanisms behind the traits.
在向日葵中,用于简单性状的分子标记,例如育性恢复、高油酸含量、除草剂耐受性或对[具体病害1]、[具体病害2]的抗性等,多年来已成功应用于标记辅助育种计划。然而,诸如产量、杂种优势、耐旱性、含油量或抗病性选择(例如针对[具体病害3])等具有重要农艺意义的复杂数量性状一直具有挑战性,需要全基因组方法。全球正在收集和保存向日葵植物遗传资源,这些资源是研究复杂性状的宝贵资源。向日葵关联群体为全基因组关联研究提供了基础,克服了双亲群体的缺点。技术进步和向日葵基因组序列的可得性使全基因组水平的新方法成为可能。基于下一代测序技术的简化基因组测序和全基因组测序促进了用于高密度图谱的大量单核苷酸多态性(SNP)标记以及SNP阵列的产生,并允许在向日葵中进行全基因组关联研究和基因组选择。已经针对分枝、开花时间、对[具体病害4]、头腐病和茎腐病的抗性等性状进行了全基因组或基于候选基因的关联研究。在杂种表现和杂种含油量方面的基因组选择的初步步骤表明,基因组选择可以成功解决向日葵中的复杂数量性状,并将有助于在未来加快向日葵育种计划。为了使向日葵比其他油料作物更具竞争力,需要更高水平的病原体抗性和更好的产量表现。此外,将植物结构优化为更复杂的生长类型以实现更高的种植密度,有可能大幅提高每公顷产量。使用生物信息学工具结合组学技术(基因组学、转录组学、蛋白质组学、代谢组学和表型组学)的综合方法将有助于识别复杂性状的目标基因和标记,并将更好地洞察这些性状背后的机制。